Columbia University Medical Center, Faculty Practice Organization, New York, NY, United States.
J Biomed Inform. 2013 Oct;46(5):905-13. doi: 10.1016/j.jbi.2013.07.005. Epub 2013 Jul 24.
Integration of clinical decision support services (CDSS) into electronic health records (EHRs) may be integral to widespread dissemination and use of clinical prediction rules in the emergency department (ED). However, the best way to design such services to maximize their usefulness in such a complex setting is poorly understood. We conducted a multi-site cross-sectional qualitative study whose aim was to describe the sociotechnical environment in the ED to inform the design of a CDSS intervention to implement the Pediatric Emergency Care Applied Research Network (PECARN) clinical prediction rules for children with minor blunt head trauma. Informed by a sociotechnical model consisting of eight dimensions, we conducted focus groups, individual interviews and workflow observations in 11 EDs, of which 5 were located in academic medical centers and 6 were in community hospitals. A total of 126 ED clinicians, information technology specialists, and administrators participated. We clustered data into 19 categories of sociotechnical factors through a process of thematic analysis and subsequently organized the categories into a sociotechnical matrix consisting of three high-level sociotechnical dimensions (workflow and communication, organizational factors, human factors) and three themes (interdisciplinary assessment processes, clinical practices related to prediction rules, EHR as a decision support tool). Design challenges that emerged from the analysis included the need to use structured data fields to support data capture and re-use while maintaining efficient care processes, supporting interdisciplinary communication, and facilitating family-clinician interaction for decision-making.
将临床决策支持服务(CDSS)整合到电子健康记录(EHR)中,对于在急诊部门(ED)广泛传播和使用临床预测规则可能是必不可少的。然而,设计此类服务以最大程度地提高其在这种复杂环境中的有用性的最佳方法还了解甚少。我们进行了一项多站点横断面定性研究,其目的是描述 ED 中的社会技术环境,以为设计 CDSS 干预措施提供信息,以实施儿科急诊护理应用研究网络(PECARN)用于儿童轻度钝性头部创伤的临床预测规则。根据由八个维度组成的社会技术模型,我们在 11 个 ED 中进行了焦点小组讨论、个人访谈和工作流程观察,其中 5 个位于学术医疗中心,6 个位于社区医院。共有 126 名 ED 临床医生、信息技术专家和管理人员参与了研究。我们通过主题分析将数据聚类为 19 个社会技术因素类别,然后将这些类别组织到一个由三个高级别社会技术维度(工作流程和沟通、组织因素、人为因素)和三个主题(跨学科评估流程、与预测规则相关的临床实践、EHR 作为决策支持工具)组成的社会技术矩阵中。分析中出现的设计挑战包括需要使用结构化数据字段来支持数据捕获和重用,同时保持高效的护理流程,支持跨学科沟通,并为决策制定促进医患互动。